This document discusses sampling variability and sampling distributions. It defines key terms like statistic, sampling distribution, and population distribution. It presents examples of how sampling distributions are impacted by sample size and population characteristics. The central limit theorem is introduced, stating that sampling distributions become normally distributed as sample size increases, even if the population is not normal. Properties of sampling distributions for the sample mean and sample proportion are provided. Examples demonstrate how to calculate probabilities using these sampling distributions.